DocumentCode :
20165
Title :
Blind Deconvolution Using Convex Programming
Author :
Ahmed, Arif ; Recht, Benjamin ; Romberg, Justin
Author_Institution :
Sch. of Electr. & Comput. Eng., Georgia Tech, Atlanta, GA, USA
Volume :
60
Issue :
3
fYear :
2014
fDate :
Mar-14
Firstpage :
1711
Lastpage :
1732
Abstract :
We consider the problem of recovering two unknown vectors, w and x, of length L from their circular convolution. We make the structural assumption that the two vectors are members of known subspaces, one with dimension N and the other with dimension K. Although the observed convolution is nonlinear in both w and x, it is linear in the rank-1 matrix formed by their outer product wx*. This observation allows us to recast the deconvolution problem as low-rank matrix recovery problem from linear measurements, whose natural convex relaxation is a nuclear norm minimization program. We prove the effectiveness of this relaxation by showing that, for “generic” signals, the program can deconvolve w and x exactly when the maximum of N and K is almost on the order of L. That is, we show that if x is drawn from a random subspace of dimension N, and w is a vector in a subspace of dimension K whose basis vectors are spread out in the frequency domain, then nuclear norm minimization recovers wx* without error. We discuss this result in the context of blind channel estimation in communications. If we have a message of length N, which we code using a random L x N coding matrix, and the encoded message travels through an unknown linear time-invariant channel of maximum length K, then the receiver can recover both the channel response and the message when L ≳ N + K, to within constant and log factors.
Keywords :
blind source separation; channel coding; channel estimation; convex programming; deconvolution; matrix algebra; blind channel estimation; blind deconvolution; channel response; circular convolution; coding matrix; convex programming; linear time-invariant channel; log factor; low-rank matrix recovery problem; natural convex relaxation; nuclear norm minimization program; rank-1 matrix; Convolution; Deconvolution; Equations; Frequency-domain analysis; Government; Minimization; Vectors; Blind deconvolution; channel estimation; compressed sensing; convex programming; image deblurring; low-rank matrix; matrix factorizations; nuclear norm minimization; rank-1 matrix;
fLanguage :
English
Journal_Title :
Information Theory, IEEE Transactions on
Publisher :
ieee
ISSN :
0018-9448
Type :
jour
DOI :
10.1109/TIT.2013.2294644
Filename :
6680763
Link To Document :
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